Height Control and Optimal Torque Planning for Jumping With Wheeled-Bipedal Robots

Yulun Zhuang, Yuan Xu, Binxin Huang, Mandan Chao, Guowei Shi, Xin Yang, Kuangen Zhang, Chenglong Fu
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引用次数: 3

Abstract

This paper mainly studies the accurate height jumping control of wheeled-bipedal robots based on torque planning and energy consumption optimization. Due to the characteristics of underactuated, nonlinear estimation, and instantaneous impact in the jumping process, accurate control of the wheeled-bipedal robot’s jumping height is complicated. In reality, robots often jump at excessive height to ensure safety, causing additional motor loss, greater ground reaction force and more energy consumption. To solve this problem, a novel wheeled-bipedal jumping dynamical model(W-JBD) is proposed to achieve accurate height control. It performs well but not suitable for the real robot because the torque has a striking step. Therefore, the Bayesian optimization for torque planning method(BOTP) is proposed, which can obtain the optimal torque planning without accurate dynamic model and within few iterations. BOTP method can reduce 82.3% height error, 26.9% energy cost with continuous torque curve. This result is validated in the Webots simulation platform. Based on the torque curve obtained in the W-JBD model to narrow the searching space, BOTP can quickly converge (40 times on average). Cooperating W-JBD model and BOTP method, it is possible to achieve the height control of real robots with reasonable times of experiments.
轮式双足机器人跳跃的高度控制与最优力矩规划
本文主要研究了基于力矩规划和能耗优化的轮式双足机器人的精确跳高控制。由于轮式双足机器人在跳跃过程中存在欠驱动、非线性估计和瞬时冲击等特点,使得其跳跃高度的精确控制十分复杂。现实中,机器人为了保证安全,往往会跳得过高,造成额外的电机损耗、更大的地面反作用力和更多的能量消耗。为了解决这一问题,提出了一种新的轮式双足跳跃动力学模型(W-JBD)来实现精确的高度控制。虽然性能良好,但由于力矩过大,不适合实际机器人使用。为此,提出了基于贝叶斯优化的转矩规划方法(BOTP),该方法无需精确的动力学模型,且迭代次数少,即可获得最优转矩规划。在连续扭矩曲线下,BOTP方法可降低82.3%的高度误差和26.9%的能耗。该结果在Webots仿真平台上得到了验证。基于W-JBD模型得到的扭矩曲线,缩小搜索空间,使BOTP能够快速收敛(平均收敛40次)。将W-JBD模型与BOTP方法相结合,通过合理的实验次数,实现对真实机器人的高度控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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